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environmental, safety, health, and quality program requirements. Assist with the coordination of radioactive and hazardous waste disposal. Mentor and train technicians. Assist Group Lead with other duties as
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Qualifications: B.S. or M.S. degree in electrical engineering, computer science, or a related discipline with a minimum of eight years of experience (B.S.) or seven years of experience (M.S.). Preferred
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Qualifications: Experience with ORNL’s systems, including ACTS, EDRM, and SuccessFactors. Excellent interpersonal, teamwork, computer, oral and written communication skills, and the ability to adjust to changing
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(MPEX). The D&C group carries out experiment-based research and development work in support of ongoing science and technology research for the U.S. DOE Fusion Energy Sciences Program. This position
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to Division strategy and National Security Sciences Directorate priorities, as well as successful program execution, development of scientific artifacts, and mission impact. Major Duties/Responsibilities
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, equity, inclusion, and accessibility by fostering a respectful workplace – in how we treat one another, work together, and measure success. As a U.S. Department of Energy (DOE) Office of Science national
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engineering and management, and new technology needs! We enable research while protecting ORNL assets, especially from cyber incidents. Our team works with other clustered computing and HPC groups to help
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experience. Preferred Qualifications: Completion of a formal training program and industrial experience. Strong knowledge of welding principles and techniques, correct type and size of welding rod, and any
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such as nuclear and chemical sciences and engineering, applied materials, advanced manufacturing, biosecurity, transportation, and computing. Our multi-disciplinary research teams are passionate about
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in the Manufacturing Demonstration Facility (MDF - https://www.ornl.gov/facility/mdf/ ) where it focuses on designing, developing, and deploying advanced machine learning and decision science